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<h1 id="sec_name">
<span data-if="hdevelop" style="display:inline;">get_contour_global_attrib_xld</span><span data-if="c" style="display:none;">T_get_contour_global_attrib_xld</span><span data-if="cpp" style="display:none;">GetContourGlobalAttribXld</span><span data-if="dotnet" style="display:none;">GetContourGlobalAttribXld</span><span data-if="python" style="display:none;">get_contour_global_attrib_xld</span> (算子名称)</h1>
<h2>名称</h2>
<p><code><span data-if="hdevelop" style="display:inline;">get_contour_global_attrib_xld</span><span data-if="c" style="display:none;">T_get_contour_global_attrib_xld</span><span data-if="cpp" style="display:none;">GetContourGlobalAttribXld</span><span data-if="dotnet" style="display:none;">GetContourGlobalAttribXld</span><span data-if="python" style="display:none;">get_contour_global_attrib_xld</span></code> — Return global attributes values of an XLD contour.</p>
<h2 id="sec_synopsis">参数签名</h2>
<div data-if="hdevelop" style="display:inline;">
<p>
<code><b>get_contour_global_attrib_xld</b>(<a href="#Contour"><i>Contour</i></a> :  : <a href="#Name"><i>Name</i></a> : <a href="#Attrib"><i>Attrib</i></a>)</code></p>
</div>
<div data-if="c" style="display:none;">
<p>
<code>Herror <b>T_get_contour_global_attrib_xld</b>(const Hobject <a href="#Contour"><i>Contour</i></a>, const Htuple <a href="#Name"><i>Name</i></a>, Htuple* <a href="#Attrib"><i>Attrib</i></a>)</code></p>
</div>
<div data-if="cpp" style="display:none;">
<p>
<code>void <b>GetContourGlobalAttribXld</b>(const HObject&amp; <a href="#Contour"><i>Contour</i></a>, const HTuple&amp; <a href="#Name"><i>Name</i></a>, HTuple* <a href="#Attrib"><i>Attrib</i></a>)</code></p>
<p>
<code><a href="HTuple.html">HTuple</a> <a href="HXLDCont.html">HXLDCont</a>::<b>GetContourGlobalAttribXld</b>(const HTuple&amp; <a href="#Name"><i>Name</i></a>) const</code></p>
<p>
<code><a href="HTuple.html">HTuple</a> <a href="HXLDCont.html">HXLDCont</a>::<b>GetContourGlobalAttribXld</b>(const HString&amp; <a href="#Name"><i>Name</i></a>) const</code></p>
<p>
<code><a href="HTuple.html">HTuple</a> <a href="HXLDCont.html">HXLDCont</a>::<b>GetContourGlobalAttribXld</b>(const char* <a href="#Name"><i>Name</i></a>) const</code></p>
<p>
<code><a href="HTuple.html">HTuple</a> <a href="HXLDCont.html">HXLDCont</a>::<b>GetContourGlobalAttribXld</b>(const wchar_t* <a href="#Name"><i>Name</i></a>) const  <span class="signnote">
            (
            Windows only)
          </span></code></p>
</div>
<div data-if="com" style="display:none;"></div>
<div data-if="dotnet" style="display:none;">
<p>
<code>static void <a href="HOperatorSet.html">HOperatorSet</a>.<b>GetContourGlobalAttribXld</b>(<a href="HObject.html">HObject</a> <a href="#Contour"><i>contour</i></a>, <a href="HTuple.html">HTuple</a> <a href="#Name"><i>name</i></a>, out <a href="HTuple.html">HTuple</a> <a href="#Attrib"><i>attrib</i></a>)</code></p>
<p>
<code><a href="HTuple.html">HTuple</a> <a href="HXLDCont.html">HXLDCont</a>.<b>GetContourGlobalAttribXld</b>(<a href="HTuple.html">HTuple</a> <a href="#Name"><i>name</i></a>)</code></p>
<p>
<code><a href="HTuple.html">HTuple</a> <a href="HXLDCont.html">HXLDCont</a>.<b>GetContourGlobalAttribXld</b>(string <a href="#Name"><i>name</i></a>)</code></p>
</div>
<div data-if="python" style="display:none;">
<p>
<code>def <b>get_contour_global_attrib_xld</b>(<a href="#Contour"><i>contour</i></a>: HObject, <a href="#Name"><i>name</i></a>: MaybeSequence[str]) -&gt; Sequence[float]</code></p>
</div>
<h2 id="sec_description">描述</h2>
<p><code><span data-if="hdevelop" style="display:inline">get_contour_global_attrib_xld</span><span data-if="c" style="display:none">get_contour_global_attrib_xld</span><span data-if="cpp" style="display:none">GetContourGlobalAttribXld</span><span data-if="com" style="display:none">GetContourGlobalAttribXld</span><span data-if="dotnet" style="display:none">GetContourGlobalAttribXld</span><span data-if="python" style="display:none">get_contour_global_attrib_xld</span></code> 返回值s of the
global attribute <a href="#Name"><i><code><span data-if="hdevelop" style="display:inline">Name</span><span data-if="c" style="display:none">Name</span><span data-if="cpp" style="display:none">Name</span><span data-if="com" style="display:none">Name</span><span data-if="dotnet" style="display:none">name</span><span data-if="python" style="display:none">name</span></code></i></a> of the XLD contour <a href="#Contour"><i><code><span data-if="hdevelop" style="display:inline">Contour</span><span data-if="c" style="display:none">Contour</span><span data-if="cpp" style="display:none">Contour</span><span data-if="com" style="display:none">Contour</span><span data-if="dotnet" style="display:none">contour</span><span data-if="python" style="display:none">contour</span></code></i></a>
in <a href="#Attrib"><i><code><span data-if="hdevelop" style="display:inline">Attrib</span><span data-if="c" style="display:none">Attrib</span><span data-if="cpp" style="display:none">Attrib</span><span data-if="com" style="display:none">Attrib</span><span data-if="dotnet" style="display:none">attrib</span><span data-if="python" style="display:none">attrib</span></code></i></a>.  Global attributes are additional values defined
for each contour.
<a href="query_contour_global_attribs_xld.html"><code><span data-if="hdevelop" style="display:inline">query_contour_global_attribs_xld</span><span data-if="c" style="display:none">query_contour_global_attribs_xld</span><span data-if="cpp" style="display:none">QueryContourGlobalAttribsXld</span><span data-if="com" style="display:none">QueryContourGlobalAttribsXld</span><span data-if="dotnet" style="display:none">QueryContourGlobalAttribsXld</span><span data-if="python" style="display:none">query_contour_global_attribs_xld</span></code></a> can be used to query which global
attributes are set for a particular contour.
</p>
<p>The following list contains information about the different global contour
attributes and 该算子s that add them to XLD contours:
</p>
<dl class="generic">


<dt><b><i><span data-if="hdevelop" style="display:inline">'bright_dark'</span><span data-if="c" style="display:none">"bright_dark"</span><span data-if="cpp" style="display:none">"bright_dark"</span><span data-if="com" style="display:none">"bright_dark"</span><span data-if="dotnet" style="display:none">"bright_dark"</span><span data-if="python" style="display:none">"bright_dark"</span></i></b></dt>
<dd>
<p>
 
The type of transition for each output XLD contour is stored in the
attribute <i><span data-if="hdevelop" style="display:inline">'bright_dark'</span><span data-if="c" style="display:none">"bright_dark"</span><span data-if="cpp" style="display:none">"bright_dark"</span><span data-if="com" style="display:none">"bright_dark"</span><span data-if="dotnet" style="display:none">"bright_dark"</span><span data-if="python" style="display:none">"bright_dark"</span></i>. It is set to <i>1.0</i>, if the
connecting line forms a bright-dark transition (left to right, viewed
from start point to end point), otherwise it is set to <i>0.0</i>.
</p>
<p>The attribute <i><span data-if="hdevelop" style="display:inline">'bright_dark'</span><span data-if="c" style="display:none">"bright_dark"</span><span data-if="cpp" style="display:none">"bright_dark"</span><span data-if="com" style="display:none">"bright_dark"</span><span data-if="dotnet" style="display:none">"bright_dark"</span><span data-if="python" style="display:none">"bright_dark"</span></i> is added by the following
operator: </p>
<p>
<a href="connect_grid_points.html"><code><span data-if="hdevelop" style="display:inline">connect_grid_points</span><span data-if="c" style="display:none">connect_grid_points</span><span data-if="cpp" style="display:none">ConnectGridPoints</span><span data-if="com" style="display:none">ConnectGridPoints</span><span data-if="dotnet" style="display:none">ConnectGridPoints</span><span data-if="python" style="display:none">connect_grid_points</span></code></a>
</p>
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</g>
</svg><div style="margin-bottom:30px;text-align:center;" class="caption">
Exemplary XLD contours (red and green) along the edges of a
rectification grid (direction from start to end point
indicated by arrow head).
The transition type, stored in the attribute
<i><span data-if="hdevelop" style="display:inline">'bright_dark'</span><span data-if="c" style="display:none">"bright_dark"</span><span data-if="cpp" style="display:none">"bright_dark"</span><span data-if="com" style="display:none">"bright_dark"</span><span data-if="dotnet" style="display:none">"bright_dark"</span><span data-if="python" style="display:none">"bright_dark"</span></i>, is <i>1.0</i> for red contours and
<i>0.0</i> for green contours.
</div>
</div>

</dd>

<dt><b><i><span data-if="hdevelop" style="display:inline">'cont_approx'</span><span data-if="c" style="display:none">"cont_approx"</span><span data-if="cpp" style="display:none">"cont_approx"</span><span data-if="com" style="display:none">"cont_approx"</span><span data-if="dotnet" style="display:none">"cont_approx"</span><span data-if="python" style="display:none">"cont_approx"</span></i></b></dt>
<dd>
<p>
 
The best way to approximate a contour is stated by the attribute
<i><span data-if="hdevelop" style="display:inline">'cont_approx'</span><span data-if="c" style="display:none">"cont_approx"</span><span data-if="cpp" style="display:none">"cont_approx"</span><span data-if="com" style="display:none">"cont_approx"</span><span data-if="dotnet" style="display:none">"cont_approx"</span><span data-if="python" style="display:none">"cont_approx"</span></i>:
for <i><span data-if="hdevelop" style="display:inline">'cont_approx'</span><span data-if="c" style="display:none">"cont_approx"</span><span data-if="cpp" style="display:none">"cont_approx"</span><span data-if="com" style="display:none">"cont_approx"</span><span data-if="dotnet" style="display:none">"cont_approx"</span><span data-if="python" style="display:none">"cont_approx"</span></i>=<i>-1.0</i>, the contour is best
approximated by a line segment, for <i><span data-if="hdevelop" style="display:inline">'cont_approx'</span><span data-if="c" style="display:none">"cont_approx"</span><span data-if="cpp" style="display:none">"cont_approx"</span><span data-if="com" style="display:none">"cont_approx"</span><span data-if="dotnet" style="display:none">"cont_approx"</span><span data-if="python" style="display:none">"cont_approx"</span></i>=<i>0.0</i>,
by an elliptic arc, and for <i><span data-if="hdevelop" style="display:inline">'cont_approx'</span><span data-if="c" style="display:none">"cont_approx"</span><span data-if="cpp" style="display:none">"cont_approx"</span><span data-if="com" style="display:none">"cont_approx"</span><span data-if="dotnet" style="display:none">"cont_approx"</span><span data-if="python" style="display:none">"cont_approx"</span></i>=<i>1.0</i>,
by a circular arc.
</p>
<p>The attribute <i><span data-if="hdevelop" style="display:inline">'cont_approx'</span><span data-if="c" style="display:none">"cont_approx"</span><span data-if="cpp" style="display:none">"cont_approx"</span><span data-if="com" style="display:none">"cont_approx"</span><span data-if="dotnet" style="display:none">"cont_approx"</span><span data-if="python" style="display:none">"cont_approx"</span></i> is added by the following
operator: </p>
<p>
<a href="segment_contours_xld.html"><code><span data-if="hdevelop" style="display:inline">segment_contours_xld</span><span data-if="c" style="display:none">segment_contours_xld</span><span data-if="cpp" style="display:none">SegmentContoursXld</span><span data-if="com" style="display:none">SegmentContoursXld</span><span data-if="dotnet" style="display:none">SegmentContoursXld</span><span data-if="python" style="display:none">segment_contours_xld</span></code></a>
</p>
</dd>

<dt><b><i><span data-if="hdevelop" style="display:inline">'is_hole'</span><span data-if="c" style="display:none">"is_hole"</span><span data-if="cpp" style="display:none">"is_hole"</span><span data-if="com" style="display:none">"is_hole"</span><span data-if="dotnet" style="display:none">"is_hole"</span><span data-if="python" style="display:none">"is_hole"</span></i></b></dt>
<dd>
<p>
 
For boundaries that enclose holes, the global contour attribute
<i><span data-if="hdevelop" style="display:inline">'is_hole'</span><span data-if="c" style="display:none">"is_hole"</span><span data-if="cpp" style="display:none">"is_hole"</span><span data-if="com" style="display:none">"is_hole"</span><span data-if="dotnet" style="display:none">"is_hole"</span><span data-if="python" style="display:none">"is_hole"</span></i> is set to <i>1.0</i>, otherwise, it is set to
<i>0.0</i>.
</p>
<p>The attribute <i><span data-if="hdevelop" style="display:inline">'is_hole'</span><span data-if="c" style="display:none">"is_hole"</span><span data-if="cpp" style="display:none">"is_hole"</span><span data-if="com" style="display:none">"is_hole"</span><span data-if="dotnet" style="display:none">"is_hole"</span><span data-if="python" style="display:none">"is_hole"</span></i> is added by the following operators:</p>
<p>
<a href="symm_difference_closed_contours_xld.html"><code><span data-if="hdevelop" style="display:inline">symm_difference_closed_contours_xld</span><span data-if="c" style="display:none">symm_difference_closed_contours_xld</span><span data-if="cpp" style="display:none">SymmDifferenceClosedContoursXld</span><span data-if="com" style="display:none">SymmDifferenceClosedContoursXld</span><span data-if="dotnet" style="display:none">SymmDifferenceClosedContoursXld</span><span data-if="python" style="display:none">symm_difference_closed_contours_xld</span></code></a>,
<a href="difference_closed_contours_xld.html"><code><span data-if="hdevelop" style="display:inline">difference_closed_contours_xld</span><span data-if="c" style="display:none">difference_closed_contours_xld</span><span data-if="cpp" style="display:none">DifferenceClosedContoursXld</span><span data-if="com" style="display:none">DifferenceClosedContoursXld</span><span data-if="dotnet" style="display:none">DifferenceClosedContoursXld</span><span data-if="python" style="display:none">difference_closed_contours_xld</span></code></a>,
<a href="intersection_closed_contours_xld.html"><code><span data-if="hdevelop" style="display:inline">intersection_closed_contours_xld</span><span data-if="c" style="display:none">intersection_closed_contours_xld</span><span data-if="cpp" style="display:none">IntersectionClosedContoursXld</span><span data-if="com" style="display:none">IntersectionClosedContoursXld</span><span data-if="dotnet" style="display:none">IntersectionClosedContoursXld</span><span data-if="python" style="display:none">intersection_closed_contours_xld</span></code></a>,
<a href="union2_closed_contours_xld.html"><code><span data-if="hdevelop" style="display:inline">union2_closed_contours_xld</span><span data-if="c" style="display:none">union2_closed_contours_xld</span><span data-if="cpp" style="display:none">Union2ClosedContoursXld</span><span data-if="com" style="display:none">Union2ClosedContoursXld</span><span data-if="dotnet" style="display:none">Union2ClosedContoursXld</span><span data-if="python" style="display:none">union2_closed_contours_xld</span></code></a>
</p>
<div style="text-align:center;" class="figure">
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</g>
</svg><div style="margin-bottom:30px;text-align:center;" class="caption">
Applying different set operations to XLD contours or contour sets
adds the global attribute <i><span data-if="hdevelop" style="display:inline">'is_hole'</span><span data-if="c" style="display:none">"is_hole"</span><span data-if="cpp" style="display:none">"is_hole"</span><span data-if="com" style="display:none">"is_hole"</span><span data-if="dotnet" style="display:none">"is_hole"</span><span data-if="python" style="display:none">"is_hole"</span></i> to the resulting
contour(s). In the example above, for two sets (red and green) of
closed contours different set operations are performed.
If a resulting boundary encloses a hole (blue contours),
<i><span data-if="hdevelop" style="display:inline">'is_hole'</span><span data-if="c" style="display:none">"is_hole"</span><span data-if="cpp" style="display:none">"is_hole"</span><span data-if="com" style="display:none">"is_hole"</span><span data-if="dotnet" style="display:none">"is_hole"</span><span data-if="python" style="display:none">"is_hole"</span></i> is set to <i>1.0</i>, otherwise the value of
<i><span data-if="hdevelop" style="display:inline">'is_hole'</span><span data-if="c" style="display:none">"is_hole"</span><span data-if="cpp" style="display:none">"is_hole"</span><span data-if="com" style="display:none">"is_hole"</span><span data-if="dotnet" style="display:none">"is_hole"</span><span data-if="python" style="display:none">"is_hole"</span></i> is <i>0.0</i> (orange contours).
</div>
</div>

</dd>

<dt><b><i><span data-if="hdevelop" style="display:inline">'regr_dev_dist'</span><span data-if="c" style="display:none">"regr_dev_dist"</span><span data-if="cpp" style="display:none">"regr_dev_dist"</span><span data-if="com" style="display:none">"regr_dev_dist"</span><span data-if="dotnet" style="display:none">"regr_dev_dist"</span><span data-if="python" style="display:none">"regr_dev_dist"</span></i></b></dt>
<dd>
<p>
 
<i><span data-if="hdevelop" style="display:inline">'regr_dev_dist'</span><span data-if="c" style="display:none">"regr_dev_dist"</span><span data-if="cpp" style="display:none">"regr_dev_dist"</span><span data-if="com" style="display:none">"regr_dev_dist"</span><span data-if="dotnet" style="display:none">"regr_dev_dist"</span><span data-if="python" style="display:none">"regr_dev_dist"</span></i> [px] gives the standard deviation of the
(Euclidean) distances between the contour points and the regression
line (see image below).
</p>
<p>The attribute <i><span data-if="hdevelop" style="display:inline">'regr_dev_dist'</span><span data-if="c" style="display:none">"regr_dev_dist"</span><span data-if="cpp" style="display:none">"regr_dev_dist"</span><span data-if="com" style="display:none">"regr_dev_dist"</span><span data-if="dotnet" style="display:none">"regr_dev_dist"</span><span data-if="python" style="display:none">"regr_dev_dist"</span></i> is added by the following
operator: </p>
<p>
<a href="regress_contours_xld.html"><code><span data-if="hdevelop" style="display:inline">regress_contours_xld</span><span data-if="c" style="display:none">regress_contours_xld</span><span data-if="cpp" style="display:none">RegressContoursXld</span><span data-if="com" style="display:none">RegressContoursXld</span><span data-if="dotnet" style="display:none">RegressContoursXld</span><span data-if="python" style="display:none">regress_contours_xld</span></code></a>
</p>
</dd>

<dt><b><i><span data-if="hdevelop" style="display:inline">'regr_dist'</span><span data-if="c" style="display:none">"regr_dist"</span><span data-if="cpp" style="display:none">"regr_dist"</span><span data-if="com" style="display:none">"regr_dist"</span><span data-if="dotnet" style="display:none">"regr_dist"</span><span data-if="python" style="display:none">"regr_dist"</span></i></b></dt>
<dd>
<p>
 
<i><span data-if="hdevelop" style="display:inline">'regr_dist'</span><span data-if="c" style="display:none">"regr_dist"</span><span data-if="cpp" style="display:none">"regr_dist"</span><span data-if="com" style="display:none">"regr_dist"</span><span data-if="dotnet" style="display:none">"regr_dist"</span><span data-if="python" style="display:none">"regr_dist"</span></i> [px] gives the minimal distance of the regression
line from the origin of the
image coordinate system (see image below).
</p>
<p>The attribute <i><span data-if="hdevelop" style="display:inline">'regr_dist'</span><span data-if="c" style="display:none">"regr_dist"</span><span data-if="cpp" style="display:none">"regr_dist"</span><span data-if="com" style="display:none">"regr_dist"</span><span data-if="dotnet" style="display:none">"regr_dist"</span><span data-if="python" style="display:none">"regr_dist"</span></i> is added by the following
operator: </p>
<p>
<a href="regress_contours_xld.html"><code><span data-if="hdevelop" style="display:inline">regress_contours_xld</span><span data-if="c" style="display:none">regress_contours_xld</span><span data-if="cpp" style="display:none">RegressContoursXld</span><span data-if="com" style="display:none">RegressContoursXld</span><span data-if="dotnet" style="display:none">RegressContoursXld</span><span data-if="python" style="display:none">regress_contours_xld</span></code></a>
</p>
</dd>

<dt><b><i><span data-if="hdevelop" style="display:inline">'regr_mean_dist'</span><span data-if="c" style="display:none">"regr_mean_dist"</span><span data-if="cpp" style="display:none">"regr_mean_dist"</span><span data-if="com" style="display:none">"regr_mean_dist"</span><span data-if="dotnet" style="display:none">"regr_mean_dist"</span><span data-if="python" style="display:none">"regr_mean_dist"</span></i></b></dt>
<dd>
<p>
 
The attribute <i><span data-if="hdevelop" style="display:inline">'regr_mean_dist'</span><span data-if="c" style="display:none">"regr_mean_dist"</span><span data-if="cpp" style="display:none">"regr_mean_dist"</span><span data-if="com" style="display:none">"regr_mean_dist"</span><span data-if="dotnet" style="display:none">"regr_mean_dist"</span><span data-if="python" style="display:none">"regr_mean_dist"</span></i> [px] contains the mean of the
Euclidean distances between each contour point and the regression line
(see image below).
</p>
<p>The attribute <i><span data-if="hdevelop" style="display:inline">'regr_mean_dist'</span><span data-if="c" style="display:none">"regr_mean_dist"</span><span data-if="cpp" style="display:none">"regr_mean_dist"</span><span data-if="com" style="display:none">"regr_mean_dist"</span><span data-if="dotnet" style="display:none">"regr_mean_dist"</span><span data-if="python" style="display:none">"regr_mean_dist"</span></i> is added by the following
operator: </p>
<p>
<a href="regress_contours_xld.html"><code><span data-if="hdevelop" style="display:inline">regress_contours_xld</span><span data-if="c" style="display:none">regress_contours_xld</span><span data-if="cpp" style="display:none">RegressContoursXld</span><span data-if="com" style="display:none">RegressContoursXld</span><span data-if="dotnet" style="display:none">RegressContoursXld</span><span data-if="python" style="display:none">regress_contours_xld</span></code></a>
</p>
</dd>

<dt><b><i><span data-if="hdevelop" style="display:inline">'regr_norm_col'</span><span data-if="c" style="display:none">"regr_norm_col"</span><span data-if="cpp" style="display:none">"regr_norm_col"</span><span data-if="com" style="display:none">"regr_norm_col"</span><span data-if="dotnet" style="display:none">"regr_norm_col"</span><span data-if="python" style="display:none">"regr_norm_col"</span></i></b></dt>
<dd>
<p>
 
<i><span data-if="hdevelop" style="display:inline">'regr_norm_col'</span><span data-if="c" style="display:none">"regr_norm_col"</span><span data-if="cpp" style="display:none">"regr_norm_col"</span><span data-if="com" style="display:none">"regr_norm_col"</span><span data-if="dotnet" style="display:none">"regr_norm_col"</span><span data-if="python" style="display:none">"regr_norm_col"</span></i> [px] is the column coordinate of the unit
normal vector of the regression line with the normal vector pointing
from the origin to the line (see image below).
</p>
<p>The attribute <i><span data-if="hdevelop" style="display:inline">'regr_norm_col'</span><span data-if="c" style="display:none">"regr_norm_col"</span><span data-if="cpp" style="display:none">"regr_norm_col"</span><span data-if="com" style="display:none">"regr_norm_col"</span><span data-if="dotnet" style="display:none">"regr_norm_col"</span><span data-if="python" style="display:none">"regr_norm_col"</span></i> is added by the following
operator: </p>
<p>
<a href="regress_contours_xld.html"><code><span data-if="hdevelop" style="display:inline">regress_contours_xld</span><span data-if="c" style="display:none">regress_contours_xld</span><span data-if="cpp" style="display:none">RegressContoursXld</span><span data-if="com" style="display:none">RegressContoursXld</span><span data-if="dotnet" style="display:none">RegressContoursXld</span><span data-if="python" style="display:none">regress_contours_xld</span></code></a>
</p>
</dd>

<dt><b><i><span data-if="hdevelop" style="display:inline">'regr_norm_row'</span><span data-if="c" style="display:none">"regr_norm_row"</span><span data-if="cpp" style="display:none">"regr_norm_row"</span><span data-if="com" style="display:none">"regr_norm_row"</span><span data-if="dotnet" style="display:none">"regr_norm_row"</span><span data-if="python" style="display:none">"regr_norm_row"</span></i></b></dt>
<dd>
<p>
 
<i><span data-if="hdevelop" style="display:inline">'regr_norm_row'</span><span data-if="c" style="display:none">"regr_norm_row"</span><span data-if="cpp" style="display:none">"regr_norm_row"</span><span data-if="com" style="display:none">"regr_norm_row"</span><span data-if="dotnet" style="display:none">"regr_norm_row"</span><span data-if="python" style="display:none">"regr_norm_row"</span></i> [px] is the row coordinate of the unit normal
vector of the regression line with the normal vector pointing from
the origin to the line (see image below).
</p>
<p>The attribute <i><span data-if="hdevelop" style="display:inline">'regr_norm_row'</span><span data-if="c" style="display:none">"regr_norm_row"</span><span data-if="cpp" style="display:none">"regr_norm_row"</span><span data-if="com" style="display:none">"regr_norm_row"</span><span data-if="dotnet" style="display:none">"regr_norm_row"</span><span data-if="python" style="display:none">"regr_norm_row"</span></i> is added by the following
operator: </p>
<p>
<a href="regress_contours_xld.html"><code><span data-if="hdevelop" style="display:inline">regress_contours_xld</span><span data-if="c" style="display:none">regress_contours_xld</span><span data-if="cpp" style="display:none">RegressContoursXld</span><span data-if="com" style="display:none">RegressContoursXld</span><span data-if="dotnet" style="display:none">RegressContoursXld</span><span data-if="python" style="display:none">regress_contours_xld</span></code></a>
</p>
<div style="text-align:center;" class="figure">
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</g>
</svg><div style="margin-bottom:30px;text-align:center;" class="caption">
Sketch of the attributes
<i><span data-if="hdevelop" style="display:inline">'regr_dist'</span><span data-if="c" style="display:none">"regr_dist"</span><span data-if="cpp" style="display:none">"regr_dist"</span><span data-if="com" style="display:none">"regr_dist"</span><span data-if="dotnet" style="display:none">"regr_dist"</span><span data-if="python" style="display:none">"regr_dist"</span></i>, <i><span data-if="hdevelop" style="display:inline">'regr_norm_col'</span><span data-if="c" style="display:none">"regr_norm_col"</span><span data-if="cpp" style="display:none">"regr_norm_col"</span><span data-if="com" style="display:none">"regr_norm_col"</span><span data-if="dotnet" style="display:none">"regr_norm_col"</span><span data-if="python" style="display:none">"regr_norm_col"</span></i>,
<i><span data-if="hdevelop" style="display:inline">'regr_norm_row'</span><span data-if="c" style="display:none">"regr_norm_row"</span><span data-if="cpp" style="display:none">"regr_norm_row"</span><span data-if="com" style="display:none">"regr_norm_row"</span><span data-if="dotnet" style="display:none">"regr_norm_row"</span><span data-if="python" style="display:none">"regr_norm_row"</span></i> for the
regression of an XLD contour (red). <i><span data-if="hdevelop" style="display:inline">'regr_mean_dist'</span><span data-if="c" style="display:none">"regr_mean_dist"</span><span data-if="cpp" style="display:none">"regr_mean_dist"</span><span data-if="com" style="display:none">"regr_mean_dist"</span><span data-if="dotnet" style="display:none">"regr_mean_dist"</span><span data-if="python" style="display:none">"regr_mean_dist"</span></i> and
<i><span data-if="hdevelop" style="display:inline">'regr_dev_dist'</span><span data-if="c" style="display:none">"regr_dev_dist"</span><span data-if="cpp" style="display:none">"regr_dev_dist"</span><span data-if="com" style="display:none">"regr_dev_dist"</span><span data-if="dotnet" style="display:none">"regr_dev_dist"</span><span data-if="python" style="display:none">"regr_dev_dist"</span></i>
are computed from the distances (black arrows) between the contour
points and the regression line (solid black line).
</div>
</div>

</dd>
</dl>
<h2 id="sec_execution">运行信息</h2>
<ul>
  <li>多线程类型:可重入(与非独占操作符并行运行)。</li>
<li>多线程作用域:全局(可以从任何线程调用)。</li>
  <li>未经并行化处理。</li>
</ul>
<h2 id="sec_parameters">参数表</h2>
  <div class="par">
<div class="parhead">
<span id="Contour" class="parname"><b><code><span data-if="hdevelop" style="display:inline">Contour</span><span data-if="c" style="display:none">Contour</span><span data-if="cpp" style="display:none">Contour</span><span data-if="com" style="display:none">Contour</span><span data-if="dotnet" style="display:none">contour</span><span data-if="python" style="display:none">contour</span></code></b> (input_object)  </span><span>xld_cont <code>→</code> <span data-if="hdevelop" style="display:inline">object</span><span data-if="dotnet" style="display:none"><a href="HXLDCont.html">HXLDCont</a></span><span data-if="python" style="display:none">HObject</span><span data-if="cpp" style="display:none"><a href="HXLDCont.html">HXLDCont</a></span><span data-if="c" style="display:none">Hobject</span></span>
</div>
<p class="pardesc">Input XLD contour.</p>
</div>
  <div class="par">
<div class="parhead">
<span id="Name" class="parname"><b><code><span data-if="hdevelop" style="display:inline">Name</span><span data-if="c" style="display:none">Name</span><span data-if="cpp" style="display:none">Name</span><span data-if="com" style="display:none">Name</span><span data-if="dotnet" style="display:none">name</span><span data-if="python" style="display:none">name</span></code></b> (input_control)  </span><span>string(-array) <code>→</code> <span data-if="dotnet" style="display:none"><a href="HTuple.html">HTuple</a></span><span data-if="python" style="display:none">MaybeSequence[str]</span><span data-if="cpp" style="display:none"><a href="HTuple.html">HTuple</a></span><span data-if="c" style="display:none">Htuple</span><span data-if="hdevelop" style="display:inline"> (string)</span><span data-if="dotnet" style="display:none"> (<i>string</i>)</span><span data-if="cpp" style="display:none"> (<i>HString</i>)</span><span data-if="c" style="display:none"> (<i>char*</i>)</span></span>
</div>
<p class="pardesc">Name of the attribute.</p>
<p class="pardesc"><span class="parcat">Default:
      </span>
    <span data-if="hdevelop" style="display:inline">'regr_norm_row'</span>
    <span data-if="c" style="display:none">"regr_norm_row"</span>
    <span data-if="cpp" style="display:none">"regr_norm_row"</span>
    <span data-if="com" style="display:none">"regr_norm_row"</span>
    <span data-if="dotnet" style="display:none">"regr_norm_row"</span>
    <span data-if="python" style="display:none">"regr_norm_row"</span>
</p>
<p class="pardesc"><span class="parcat">Suggested values:
      </span><span data-if="hdevelop" style="display:inline">'regr_norm_row'</span><span data-if="c" style="display:none">"regr_norm_row"</span><span data-if="cpp" style="display:none">"regr_norm_row"</span><span data-if="com" style="display:none">"regr_norm_row"</span><span data-if="dotnet" style="display:none">"regr_norm_row"</span><span data-if="python" style="display:none">"regr_norm_row"</span>, <span data-if="hdevelop" style="display:inline">'regr_norm_col'</span><span data-if="c" style="display:none">"regr_norm_col"</span><span data-if="cpp" style="display:none">"regr_norm_col"</span><span data-if="com" style="display:none">"regr_norm_col"</span><span data-if="dotnet" style="display:none">"regr_norm_col"</span><span data-if="python" style="display:none">"regr_norm_col"</span>, <span data-if="hdevelop" style="display:inline">'regr_mean_dist'</span><span data-if="c" style="display:none">"regr_mean_dist"</span><span data-if="cpp" style="display:none">"regr_mean_dist"</span><span data-if="com" style="display:none">"regr_mean_dist"</span><span data-if="dotnet" style="display:none">"regr_mean_dist"</span><span data-if="python" style="display:none">"regr_mean_dist"</span>, <span data-if="hdevelop" style="display:inline">'regr_dev_dist'</span><span data-if="c" style="display:none">"regr_dev_dist"</span><span data-if="cpp" style="display:none">"regr_dev_dist"</span><span data-if="com" style="display:none">"regr_dev_dist"</span><span data-if="dotnet" style="display:none">"regr_dev_dist"</span><span data-if="python" style="display:none">"regr_dev_dist"</span>, <span data-if="hdevelop" style="display:inline">'cont_approx'</span><span data-if="c" style="display:none">"cont_approx"</span><span data-if="cpp" style="display:none">"cont_approx"</span><span data-if="com" style="display:none">"cont_approx"</span><span data-if="dotnet" style="display:none">"cont_approx"</span><span data-if="python" style="display:none">"cont_approx"</span>, <span data-if="hdevelop" style="display:inline">'bright_dark'</span><span data-if="c" style="display:none">"bright_dark"</span><span data-if="cpp" style="display:none">"bright_dark"</span><span data-if="com" style="display:none">"bright_dark"</span><span data-if="dotnet" style="display:none">"bright_dark"</span><span data-if="python" style="display:none">"bright_dark"</span>, <span data-if="hdevelop" style="display:inline">'is_hole'</span><span data-if="c" style="display:none">"is_hole"</span><span data-if="cpp" style="display:none">"is_hole"</span><span data-if="com" style="display:none">"is_hole"</span><span data-if="dotnet" style="display:none">"is_hole"</span><span data-if="python" style="display:none">"is_hole"</span></p>
</div>
  <div class="par">
<div class="parhead">
<span id="Attrib" class="parname"><b><code><span data-if="hdevelop" style="display:inline">Attrib</span><span data-if="c" style="display:none">Attrib</span><span data-if="cpp" style="display:none">Attrib</span><span data-if="com" style="display:none">Attrib</span><span data-if="dotnet" style="display:none">attrib</span><span data-if="python" style="display:none">attrib</span></code></b> (output_control)  </span><span>real-array <code>→</code> <span data-if="dotnet" style="display:none"><a href="HTuple.html">HTuple</a></span><span data-if="python" style="display:none">Sequence[float]</span><span data-if="cpp" style="display:none"><a href="HTuple.html">HTuple</a></span><span data-if="c" style="display:none">Htuple</span><span data-if="hdevelop" style="display:inline"> (real)</span><span data-if="dotnet" style="display:none"> (<i>double</i>)</span><span data-if="cpp" style="display:none"> (<i>double</i>)</span><span data-if="c" style="display:none"> (<i>double</i>)</span></span>
</div>
<p class="pardesc">Attribute values.</p>
</div>
<h2 id="sec_predecessors">可能的前置算子</h2>
<p>
<code><a href="lines_gauss.html"><span data-if="hdevelop" style="display:inline">lines_gauss</span><span data-if="c" style="display:none">lines_gauss</span><span data-if="cpp" style="display:none">LinesGauss</span><span data-if="com" style="display:none">LinesGauss</span><span data-if="dotnet" style="display:none">LinesGauss</span><span data-if="python" style="display:none">lines_gauss</span></a></code>, 
<code><a href="lines_facet.html"><span data-if="hdevelop" style="display:inline">lines_facet</span><span data-if="c" style="display:none">lines_facet</span><span data-if="cpp" style="display:none">LinesFacet</span><span data-if="com" style="display:none">LinesFacet</span><span data-if="dotnet" style="display:none">LinesFacet</span><span data-if="python" style="display:none">lines_facet</span></a></code>, 
<code><a href="edges_sub_pix.html"><span data-if="hdevelop" style="display:inline">edges_sub_pix</span><span data-if="c" style="display:none">edges_sub_pix</span><span data-if="cpp" style="display:none">EdgesSubPix</span><span data-if="com" style="display:none">EdgesSubPix</span><span data-if="dotnet" style="display:none">EdgesSubPix</span><span data-if="python" style="display:none">edges_sub_pix</span></a></code>, 
<code><a href="segment_contours_xld.html"><span data-if="hdevelop" style="display:inline">segment_contours_xld</span><span data-if="c" style="display:none">segment_contours_xld</span><span data-if="cpp" style="display:none">SegmentContoursXld</span><span data-if="com" style="display:none">SegmentContoursXld</span><span data-if="dotnet" style="display:none">SegmentContoursXld</span><span data-if="python" style="display:none">segment_contours_xld</span></a></code>
</p>
<h2 id="sec_successors">可能的后置算子</h2>
<p>
<code><a href="fit_circle_contour_xld.html"><span data-if="hdevelop" style="display:inline">fit_circle_contour_xld</span><span data-if="c" style="display:none">fit_circle_contour_xld</span><span data-if="cpp" style="display:none">FitCircleContourXld</span><span data-if="com" style="display:none">FitCircleContourXld</span><span data-if="dotnet" style="display:none">FitCircleContourXld</span><span data-if="python" style="display:none">fit_circle_contour_xld</span></a></code>, 
<code><a href="fit_ellipse_contour_xld.html"><span data-if="hdevelop" style="display:inline">fit_ellipse_contour_xld</span><span data-if="c" style="display:none">fit_ellipse_contour_xld</span><span data-if="cpp" style="display:none">FitEllipseContourXld</span><span data-if="com" style="display:none">FitEllipseContourXld</span><span data-if="dotnet" style="display:none">FitEllipseContourXld</span><span data-if="python" style="display:none">fit_ellipse_contour_xld</span></a></code>, 
<code><a href="fit_line_contour_xld.html"><span data-if="hdevelop" style="display:inline">fit_line_contour_xld</span><span data-if="c" style="display:none">fit_line_contour_xld</span><span data-if="cpp" style="display:none">FitLineContourXld</span><span data-if="com" style="display:none">FitLineContourXld</span><span data-if="dotnet" style="display:none">FitLineContourXld</span><span data-if="python" style="display:none">fit_line_contour_xld</span></a></code>, 
<code><a href="fit_rectangle2_contour_xld.html"><span data-if="hdevelop" style="display:inline">fit_rectangle2_contour_xld</span><span data-if="c" style="display:none">fit_rectangle2_contour_xld</span><span data-if="cpp" style="display:none">FitRectangle2ContourXld</span><span data-if="com" style="display:none">FitRectangle2ContourXld</span><span data-if="dotnet" style="display:none">FitRectangle2ContourXld</span><span data-if="python" style="display:none">fit_rectangle2_contour_xld</span></a></code>
</p>
<h2 id="sec_see">参考其它</h2>
<p>
<code><a href="query_contour_global_attribs_xld.html"><span data-if="hdevelop" style="display:inline">query_contour_global_attribs_xld</span><span data-if="c" style="display:none">query_contour_global_attribs_xld</span><span data-if="cpp" style="display:none">QueryContourGlobalAttribsXld</span><span data-if="com" style="display:none">QueryContourGlobalAttribsXld</span><span data-if="dotnet" style="display:none">QueryContourGlobalAttribsXld</span><span data-if="python" style="display:none">query_contour_global_attribs_xld</span></a></code>, 
<code><a href="get_contour_attrib_xld.html"><span data-if="hdevelop" style="display:inline">get_contour_attrib_xld</span><span data-if="c" style="display:none">get_contour_attrib_xld</span><span data-if="cpp" style="display:none">GetContourAttribXld</span><span data-if="com" style="display:none">GetContourAttribXld</span><span data-if="dotnet" style="display:none">GetContourAttribXld</span><span data-if="python" style="display:none">get_contour_attrib_xld</span></a></code>, 
<code><a href="query_contour_attribs_xld.html"><span data-if="hdevelop" style="display:inline">query_contour_attribs_xld</span><span data-if="c" style="display:none">query_contour_attribs_xld</span><span data-if="cpp" style="display:none">QueryContourAttribsXld</span><span data-if="com" style="display:none">QueryContourAttribsXld</span><span data-if="dotnet" style="display:none">QueryContourAttribsXld</span><span data-if="python" style="display:none">query_contour_attribs_xld</span></a></code>
</p>
<h2 id="sec_module">模块</h2>
<p>
Foundation</p>
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